降维说服

S. Malamud, Andreas Schrimpf
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引用次数: 5

摘要

观察多维数据(状态向量)的代理(发送方)应该如何说服另一个代理采取期望的行动?我们表明,对于发送者来说,通过将状态向量投射到我们称之为“最优信息流形”的低维对象上来执行(非线性)降维总是最优的。我们描述了这个流形的几何属性,并将它们与发送者的偏好联系起来。最优策略将信息分成“好”和“坏”两部分。当发送者的边际效用是线性的,它总是最优的揭示所有的好信息。而在边际效用为凹的情况下,信息优化设计隐藏了好信息的极端实现,只显示了它的方向(符号)。我们通过明确地解决几个多维贝叶斯说服问题来说明这些影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Persuasion by Dimension Reduction
How should an agent (the sender) observing multi-dimensional data (the state vector) persuade another agent to take the desired action? We show that it is always optimal for the sender to perform a (non-linear) dimension reduction by projecting the state vector onto a lower-dimensional object that we call the "optimal information manifold." We characterize geometric properties of this manifold and link them to the sender's preferences. Optimal policy splits information into "good" and "bad" components. When the sender's marginal utility is linear, it is always optimal to reveal the full magnitude of good information. In contrast, with concave marginal utility, optimal information design conceals the extreme realizations of good information and only reveals its direction (sign). We illustrate these effects by explicitly solving several multi-dimensional Bayesian persuasion problems.
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